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Early Detection of Lung Cancer from CT Images: Nodule Segmentation and Classification Using Deep Learning

机译:来自CT的肺癌早期检测图像:深度学习结节分割和分类

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Lung cancer is one of the most abundant causes of the cancerous deaths worldwide. It has low survival rate mainly due to the late diagnosis. With the hardware advancements in computed tomography (CT) technology, it is now possible to capture the high resolution images of lung region. However, it needs to be augmented by efficient algorithms to detect the lung cancer in the earlier stages using the acquired CT images. To this end, we propose a two-step algorithm for early detection of lung cancer. Given the CT image, we first extract the patch from the center location of the nodule and segment the lung nodule region. We propose to use Otsu method followed by morphological operations for the segmentation. This step enables accurate segmentation due to the use of data-driven threshold. Unlike other methods, we perform the segmentation without using the complete contour information of the nodule. In the second step, a deep convolutional neural network (CNN) is used for the better classification (malignant or benign) of the nodule present in the segmented patch. Accurate segmentation of even a tiny nodule followed by better classification using deep CNN enables the early detection of lung cancer. Experiments have been conducted using 6306 CT images of LIDC-IDRI database. We achieved the test accuracy of 84.13%, with the sensitivity and specificity of 91.69% and 73.16%, respectively, clearly outperforming the state-of-the-art algorithms.
机译:肺癌是全世界癌症死亡最丰富的原因之一。它具有低生存率,主要是由于晚期诊断。通过计算机断层扫描(CT)技术的硬件进步,现在可以捕获肺区的高分辨率图像。然而,需要通过有效的算法来增强使用所获得的CT图像来检测早期阶段中的肺癌。为此,我们提出了一种用于早期检测肺癌的两步算法。考虑到CT图像,首先从结节的中心位置提取斑块并分段肺结节区域。我们建议使用OTSU方法,然后进行分割的形态操作。由于使用数据驱动阈值,该步骤可以实现准确的分割。与其他方法不同,我们在不使用结节的完整轮廓信息的情况下执行分割。在第二步中,深卷积神经网络(CNN)用于分段贴片中存在的结节的更好分类(恶性或良性或良性)。甚至微小结节的精确分割,然后使用深CNN进行更好的分类,可以早期发现肺癌。使用6306 CT图像的LIDC-IDRI数据库进行了实验。我们达到了84.13%的测试精度,灵敏度和特异性分别为91.69%和73.16%,显然优于最先进的算法。

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